Analysis of DNA Sequence Classification Using CNN and Hybrid Models
Author(s) -
Hemalatha Gunasekaran,
K. Ramalakshmi,
A. Rex Macedo Arokiaraj,
S. Deepa Kanmani,
Chandran Venkatesan,
C. Suresh Gnana Dhas
Publication year - 2021
Publication title -
computational and mathematical methods in medicine
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.462
H-Index - 48
eISSN - 1748-6718
pISSN - 1748-670X
DOI - 10.1155/2021/1835056
Subject(s) - context (archaeology) , computer science , artificial intelligence , sequence (biology) , machine learning , feature selection , identification (biology) , deep learning , encoding (memory) , dna sequencing , pattern recognition (psychology) , dna , biology , genetics , paleontology , botany
In a general computational context for biomedical data analysis, DNA sequence classification is a crucial challenge. Several machine learning techniques have used to complete this task in recent years successfully. Identification and classification of viruses are essential to avoid an outbreak like COVID-19. Regardless, the feature selection process remains the most challenging aspect of the issue. The most commonly used representations worsen the case of high dimensionality, and sequences lack explicit features. It also helps in detecting the effect of viruses and drug design. In recent days, deep learning (DL) models can automatically extract the features from the input. In this work, we employed CNN, CNN-LSTM, and CNN-Bidirectional LSTM architectures using Label and K -mer encoding for DNA sequence classification. The models are evaluated on different classification metrics. From the experimental results, the CNN and CNN-Bidirectional LSTM with K -mer encoding offers high accuracy with 93.16% and 93.13%, respectively, on testing data.
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